rezazad68/transdeeplab
TransDeepLab: Convolution-Free Transformer-based DeepLab v3+ for Medical Image Segmentation
This project helps medical researchers and practitioners precisely identify and outline organs or anomalies in medical images like MRI or CT scans. You provide medical images, and it outputs segmented images highlighting specific regions of interest. It's designed for medical imaging specialists, radiologists, or biomedical researchers who need accurate image analysis.
No commits in the last 6 months.
Use this if you need to accurately segment specific structures within medical images for diagnosis, treatment planning, or research.
Not ideal if you lack experience with Python scripting or command-line interfaces, as it requires technical setup and execution.
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88
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Language
Python
License
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Last pushed
Dec 29, 2022
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